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Hauptverfasser: Gu, Yanggan, Wang, Yuanyi, Yan, Zhaoyi, Zhang, Yiming, Zhou, Qi, Wu, Fei, Yang, Hongxia
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2505.13878
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author Gu, Yanggan
Wang, Yuanyi
Yan, Zhaoyi
Zhang, Yiming
Zhou, Qi
Wu, Fei
Yang, Hongxia
author_facet Gu, Yanggan
Wang, Yuanyi
Yan, Zhaoyi
Zhang, Yiming
Zhou, Qi
Wu, Fei
Yang, Hongxia
contents Model fusion combines multiple Large Language Models (LLMs) with different strengths into a more powerful, integrated model through lightweight training methods. Existing works on model fusion focus primarily on supervised fine-tuning (SFT), leaving preference alignment (PA) --a critical phase for enhancing LLM performance--largely unexplored. The current few fusion methods on PA phase, like WRPO, simplify the process by utilizing only response outputs from source models while discarding their probability information. To address this limitation, we propose InfiFPO, a preference optimization method for implicit model fusion. InfiFPO replaces the reference model in Direct Preference Optimization (DPO) with a fused source model that synthesizes multi-source probabilities at the sequence level, circumventing complex vocabulary alignment challenges in previous works and meanwhile maintaining the probability information. By introducing probability clipping and max-margin fusion strategies, InfiFPO enables the pivot model to align with human preferences while effectively distilling knowledge from source models. Comprehensive experiments on 11 widely-used benchmarks demonstrate that InfiFPO consistently outperforms existing model fusion and preference optimization methods. When using Phi-4 as the pivot model, InfiFPO improve its average performance from 79.95 to 83.33 on 11 benchmarks, significantly improving its capabilities in mathematics, coding, and reasoning tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2505_13878
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle InfiFPO: Implicit Model Fusion via Preference Optimization in Large Language Models
Gu, Yanggan
Wang, Yuanyi
Yan, Zhaoyi
Zhang, Yiming
Zhou, Qi
Wu, Fei
Yang, Hongxia
Machine Learning
Computation and Language
Model fusion combines multiple Large Language Models (LLMs) with different strengths into a more powerful, integrated model through lightweight training methods. Existing works on model fusion focus primarily on supervised fine-tuning (SFT), leaving preference alignment (PA) --a critical phase for enhancing LLM performance--largely unexplored. The current few fusion methods on PA phase, like WRPO, simplify the process by utilizing only response outputs from source models while discarding their probability information. To address this limitation, we propose InfiFPO, a preference optimization method for implicit model fusion. InfiFPO replaces the reference model in Direct Preference Optimization (DPO) with a fused source model that synthesizes multi-source probabilities at the sequence level, circumventing complex vocabulary alignment challenges in previous works and meanwhile maintaining the probability information. By introducing probability clipping and max-margin fusion strategies, InfiFPO enables the pivot model to align with human preferences while effectively distilling knowledge from source models. Comprehensive experiments on 11 widely-used benchmarks demonstrate that InfiFPO consistently outperforms existing model fusion and preference optimization methods. When using Phi-4 as the pivot model, InfiFPO improve its average performance from 79.95 to 83.33 on 11 benchmarks, significantly improving its capabilities in mathematics, coding, and reasoning tasks.
title InfiFPO: Implicit Model Fusion via Preference Optimization in Large Language Models
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2505.13878